Recently several generalizations of the popular latent structural SVM framework have been proposed in the literature. Broadly speaking, the generalizations can be divided into two categories: (i) those that predict the output variables while either marginalizing the latent variables or estimating their most likely values; and (ii) those that predict the output variables by minimizing an entropy-based uncertainty measure over the latent space. In order to aid their application in computer vision, we study these generalizations with the aim of identifying their strengths and weaknesses. To this end, we propose a novel prediction criterion that includes as special cases all previous prediction criteria that have been used in the literature. Sp...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
Recently several generalizations of the popular latent structural SVM framework have been proposed i...
International audienceRecently several generalizations of the popular latent structural SVM framewor...
Recently several generalizations of the popular latent structural SVM framework have been proposed i...
In this paper we propose a unified frame-work for structured prediction with latent variables which ...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
In this paper we present active learning algorithms in the context of structured prediction problems...
Structured output prediction in machine learning is the study of learning to predict complex objects...
A powerful and flexible approach to structured prediction consists in embedding the structured objec...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
Recently several generalizations of the popular latent structural SVM framework have been proposed i...
International audienceRecently several generalizations of the popular latent structural SVM framewor...
Recently several generalizations of the popular latent structural SVM framework have been proposed i...
In this paper we propose a unified frame-work for structured prediction with latent variables which ...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
In this paper we present active learning algorithms in the context of structured prediction problems...
Structured output prediction in machine learning is the study of learning to predict complex objects...
A powerful and flexible approach to structured prediction consists in embedding the structured objec...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...
In this work, we propose the marginal structured SVM (MSSVM) for structured prediction with hidden v...